Brain cancer is one of the most deadly cancers, with a very low survival rate. By understanding the factors that lead to cancer spreading, practitioners can concentrate their efforts on providing the most effective treatment, and they can modify the treatment plan as necessary. Also, knowing the likelihood of a patient\u27s survival over a specified time period can enable them to make informed decisions about adjusting their routines, future investments, and other health-related decisions. The use of data-driven models in cancer research has gained increased popularity over the past several decades. Moreover, there is still much uncertainty surrounding the factors that contribute to survival of cancer, making it difficult to develop a model...
The research in the medical domain is clinical in its nature but with the advancement of information...
This work presents a survivability prediction model for rectal cancer patients developed through mac...
This study applies machine learning techniques for predicting ovarian cancer survivability using Cer...
Brain cancer is one of the most deadly cancers, with a very low survival rate. By understanding the ...
Despite improved surgical and adjuvant treatment options, malignant brain tumors remain non-curable ...
Given growing clinical needs, in recent years Artificial Intelligence (AI) techniques have increasin...
In this paper we present an analysis of the prediction of survivability on different attributes, rat...
Part 1: Medical Artificial Intelligence Modeling (MAIM)International audienceIn this work, a tool fo...
PhD ThesisOvarian cancer is the 5th most common cancer in females and the UK has one of the highest ...
The brain is an intrinsic and complicated component of human anatomy. It is a collection of connecti...
Breast, lung, prostate, and stomach cancers are the most frequent cancer types globally. Early-stage...
In the United states, 13% of women are diagnosed with breast cancer in their lifetime, and it is the...
Cancer is the leading cause of death in economically developed countries and the second leading caus...
BACKGROUND: Breast cancer is one of the most common cancers with a high mortality rate among women....
Genomic profiles among different breast cancer survivors who received similar treatment may provide ...
The research in the medical domain is clinical in its nature but with the advancement of information...
This work presents a survivability prediction model for rectal cancer patients developed through mac...
This study applies machine learning techniques for predicting ovarian cancer survivability using Cer...
Brain cancer is one of the most deadly cancers, with a very low survival rate. By understanding the ...
Despite improved surgical and adjuvant treatment options, malignant brain tumors remain non-curable ...
Given growing clinical needs, in recent years Artificial Intelligence (AI) techniques have increasin...
In this paper we present an analysis of the prediction of survivability on different attributes, rat...
Part 1: Medical Artificial Intelligence Modeling (MAIM)International audienceIn this work, a tool fo...
PhD ThesisOvarian cancer is the 5th most common cancer in females and the UK has one of the highest ...
The brain is an intrinsic and complicated component of human anatomy. It is a collection of connecti...
Breast, lung, prostate, and stomach cancers are the most frequent cancer types globally. Early-stage...
In the United states, 13% of women are diagnosed with breast cancer in their lifetime, and it is the...
Cancer is the leading cause of death in economically developed countries and the second leading caus...
BACKGROUND: Breast cancer is one of the most common cancers with a high mortality rate among women....
Genomic profiles among different breast cancer survivors who received similar treatment may provide ...
The research in the medical domain is clinical in its nature but with the advancement of information...
This work presents a survivability prediction model for rectal cancer patients developed through mac...
This study applies machine learning techniques for predicting ovarian cancer survivability using Cer...